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CNN-GRU-Based Feature Extraction Model of Multivariate Time-Series Data for Regional Clustering

机译:基于CNN-GRU的特征提取模型的区域聚类多元时间序列数据

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Clustering-related research on data with time continuity is largely done through statistical analysis and thus does not fully reflect the data's features. In this paper, we propose a CNN-GRU-based model to extract each variable's time-dependent changes and features in multivariate data. We have utilized CNN to identify the features of each variable and derive trends over time based on GRU. Fuzzy C-means clustering is performed based on this feature and overlapped cluster results are finally obtained. Experiments were conducted using two years of card usage data to extract the features according to the local consumption industries and apply these to regional clustering. The proposed method's performance is evaluated by comparing the proposed method with data characterization and clustering methods used in existing research.
机译:与时间连续性的数据的聚类相关的研究主要通过统计分析来完全反映数据的特征。 在本文中,我们提出了基于CNN-GRU的模型,以提取每个变量的多变量数据中的时间依赖性变化和特征。 我们利用CNN来识别每个变量的特征,并基于GRU的时间随时间推导趋势。 基于此功能执行模糊C-Means群集,并且最终获得重叠的集群结果。 使用两年的卡片使用数据进行实验,以根据当地消费行业提取特征并将这些产品应用于区域聚类。 通过比较现有研究中使用的数据表征和聚类方法的提出方法来评估所提出的方法的性能。

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